Bitcoin ETFs Record $4.57 Billion Outflows in Final Two Months of 2025

TheNewsCryptoPublished on 2026-01-02Last updated on 2026-01-02

Abstract

Bitcoin ETFs began 2025 with strong inflows, reaching $6.02 billion by July. However, the trend reversed sharply in the final two months of the year, with record outflows totaling $4.57 billion in November and December. This shift coincided with a 29.19% drop in Bitcoin's price from its October all-time high. Concurrently, investor interest diversified into new altcoin ETFs, with XRP and Solana ETFs attracting net inflows of $1.17 billion and $567 million, respectively. While this indicates a more selective market, some experts anticipate a strong Bitcoin recovery in 2026.

Bitcoin ETFs saw a huge inflow in January 2025, about $5.25 billion, which indicated increased investor interest, and has been a great start for that year. That excitement seemed to pick up steam by the middle of the year, where July 2025 saw total inflows reaching about $6.02 billion.

But in the last few months, this early-year confidence started to fade, leading to outflows. According to SoSoValue data, November and December in particular had the largest outflows, totaling almost $4.57 billion. This is the biggest since BTC ETFs were launched in 2024.

Investor Focus Moves to Altcoin ETFs

The initial launch of U.S. spot Bitcoin ETFs encouraged crypto beginners to enter the market without directly holding cryptocurrencies through regulated financial instruments. Even Ethereum ETFs showed major outflows, which are around $2.04 billion. Specifically, in November, the outflows were $1.42 billion.

However, as additional spot ETFs for altcoins such as XRP and SOL were launched, in the same period of time, which is mid-October and November, the market reflected increased market fragmentation and diversification of investor demand. The XRP ETFs posted net inflows of around $1.166 billion, and SOL ETFs posted $566.99 million.

BTC ETFs Outflows Align with Price Drop

The surge in outflows signals a loss of institutional interest in the global first and major cryptocurrency, as the BTC ETFs alone did not see the tough time, which coincided with a BTC price too. Bitcoin reached its all-time high on October 7, at $126,198, and now it was down by 29.19% over the last two months as per CoinMarketCap data.

​As Bitcoin ETFs ended the year 2025 with massive outflows, while altcoins ETFs such as XRP and Solana acquired capital, that investors are more selective with crypto ETF investments going into 2026.

But experts like Bitwise CIO Matt Hougan said that Bitcoin could experience a strong performance in 2026, as it will break the four-year cycle and set new all-time highs.

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TagsBitcoin ETFBTCBTC ETFETF

Related Questions

QWhat was the total amount of outflows for Bitcoin ETFs in the final two months of 2025?

AThe total outflows for Bitcoin ETFs in November and December 2025 were $4.57 billion.

QWhich altcoin ETFs saw net inflows during the period of Bitcoin's outflows, and what were the amounts?

AXRP ETFs posted net inflows of approximately $1.166 billion, and SOL (Solana) ETFs posted net inflows of $566.99 million.

QWhat was the significant price change for Bitcoin over the last two months of 2025, according to the article?

ABitcoin's price was down by 29.19% over the last two months of 2025, after reaching its all-time high of $126,198 on October 7.

QWhat reason does the article suggest for the shift in investor focus away from Bitcoin ETFs?

AThe article suggests the shift was due to increased fragmentation and diversification of investor demand, driven by the launch of new spot ETFs for altcoins like XRP and SOL.

QDespite the outflows, what positive prediction for Bitcoin in 2026 is mentioned from an expert?

ABitwise CIO Matt Hougan predicted that Bitcoin could experience a strong performance in 2026, breaking its four-year cycle and setting new all-time highs.

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